代码搜索:gradient

找到约 2,951 项符合「gradient」的源代码

代码结果 2,951
www.eeworm.com/read/150905/12250405

m mlpbkp.m

function g = mlpbkp(net, x, z, deltas) %MLPBKP Backpropagate gradient of error function for 2-layer network. % % Description % G = MLPBKP(NET, X, Z, DELTAS) takes a network data structure NET % togeth
www.eeworm.com/read/150905/12250439

m scg.m

function [x, options, flog, pointlog, scalelog] = scg(f, x, options, gradf, varargin) %SCG Scaled conjugate gradient optimization. % % Description % [X, OPTIONS] = SCG(F, X, OPTIONS, GRADF) uses a sca
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m glmgrad.m

function [g, gdata, gprior] = glmgrad(net, x, t) %GLMGRAD Evaluate gradient of error function for generalized linear model. % % Description % G = GLMGRAD(NET, X, T) takes a generalized linear model da
www.eeworm.com/read/150905/12250661

m mlpgrad.m

function [g, gdata, gprior] = mlpgrad(net, x, t) %MLPGRAD Evaluate gradient of error function for 2-layer network. % % Description % G = MLPGRAD(NET, X, T) takes a network data structure NET together
www.eeworm.com/read/150290/12300452

html syng.html

Synergistic Image Segmenter Edge Detection and Image Segmentation (EDISON) System
www.eeworm.com/read/338243/12316518

man slaveforward.3.man

SLAVEFORWARD(derived)FORWARD OPERATORS SLAVEFORWARD(derived) Nov 20 10:03 NAME SlaveForward SYNOPSIS #include cla
www.eeworm.com/read/338243/12316637

hh cg.hh

//============================================================ // COOOL version 1.1 --- Nov, 1995 // Center for Wave Phenomena, Colorado School of Mines //==================
www.eeworm.com/read/230872/14271289

html readme.html

PgsLookAndFeel - An introduction h1, h2, h3 { font-size: 16px; background: #0098FF; border-bottom: 1px solid #006BB3; color
www.eeworm.com/read/220289/14843748

m netgrad.m

function g = netgrad(w, net, x, t) %NETGRAD Evaluate network error gradient for generic optimizers % % Description % % G = NETGRAD(W, NET, X, T) takes a weight vector W and a network data % structure
www.eeworm.com/read/220289/14843784

m mlpbkp.m

function g = mlpbkp(net, x, z, deltas) %MLPBKP Backpropagate gradient of error function for 2-layer network. % % Description % G = MLPBKP(NET, X, Z, DELTAS) takes a network data structure NET % togeth